N-tuple neural networks (NTNNs) have been successfully applied to both pattern recognition and function approximation tasks. Their main advantages include a single layer structure, capability ofrealizing highly non-linear mappings and simplicity of operation. In this work a modification of the basic network architecture is presented, which allows it to operate as a non-parametric kernel regression estimator. This type of network is inherently capable of approximating complex probability density functions (pdfs) and, in the limiting sense, deterministic arbitrary function mappings. At the same time, the regression network features a powerful one-pass training procedure and its learning is statistically consistent. The major advantage of util...
Artificial neural networks (ANNs) are powerful tools for machine learning with applications in many ...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
The theory of Neural Networks (NNs) has witnessed a striking progress in the past fifteen years. The...
N-tuple neural networks (NTNNs) have been successfully applied to both pattern recognition and funct...
The idea of n-tuple sampling as a basis for pattern recognition, as proposed by Bledsoe and Browning...
An N-tuple Neural Network (NNN) is described in which each node fires selectively to its own table o...
A type of the N-tuple neural architecture can be shown to perform function approximation based on lo...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
The use of n-tuple or weightless neural networks as pattern recognition devices has been well docume...
The use of n-tuple or weightless neural networks as pattern recognition devices is well known (Aleks...
The subject of this thesis is the n-tuple net.work (RAMnet). The major advantage of RAMnets is their...
The N-tuple approximation network offers many advantages over conventional neural networks in terms ...
Consider the multivariate nonparametric regression model. It is shown that estimators based on spars...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
The use of n-tuple or weightless neural networks as pattern recognition devices i well known (Aleksa...
Artificial neural networks (ANNs) are powerful tools for machine learning with applications in many ...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
The theory of Neural Networks (NNs) has witnessed a striking progress in the past fifteen years. The...
N-tuple neural networks (NTNNs) have been successfully applied to both pattern recognition and funct...
The idea of n-tuple sampling as a basis for pattern recognition, as proposed by Bledsoe and Browning...
An N-tuple Neural Network (NNN) is described in which each node fires selectively to its own table o...
A type of the N-tuple neural architecture can be shown to perform function approximation based on lo...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
The use of n-tuple or weightless neural networks as pattern recognition devices has been well docume...
The use of n-tuple or weightless neural networks as pattern recognition devices is well known (Aleks...
The subject of this thesis is the n-tuple net.work (RAMnet). The major advantage of RAMnets is their...
The N-tuple approximation network offers many advantages over conventional neural networks in terms ...
Consider the multivariate nonparametric regression model. It is shown that estimators based on spars...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
The use of n-tuple or weightless neural networks as pattern recognition devices i well known (Aleksa...
Artificial neural networks (ANNs) are powerful tools for machine learning with applications in many ...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
The theory of Neural Networks (NNs) has witnessed a striking progress in the past fifteen years. The...